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What and Who
Title:Language dynamics in social media
Speaker:Animesh Mukherjee
coming from:Indian Institute of Technology, Kharagpur
Speakers Bio:Animesh Mukherjee is an Associate Professor in the Department of Computer Science and Engineering, Indian Institute of Technology, Kharagpur. He is also a Simons Associate, ICTP, Italy and an ACM Distinguished Speaker. His main research interests are in applying complex system approaches (mainly complex networks and agent-based simulations) to different problems in Computer Science including

(a) human language evolution and change,
(b) web social media,
(c) information retrieval, and
(d) natural language processing
He regularly publishes in top conferences like ACM SIGKDD, ACM CIKM, ACM CSCW, ICWSM, ACL, EMNLP, COLING, ACM/IEEE JCDL and journals like PNAS, Sci Reports, ACM TKDD, ACM CACM, IEEE TKDE, IEEE JSAC, Phys. Rev, Europhysics Letters. He regularly serves on the programme committee of various top conferences like IJCAI, EMNLP, COLING. He has received many notable awards including the INAE Young Engineer Award 2012, INSA Medal for Young Scientists 2014, IBM Faculty Award 2015 and the Humboldt Fellowship for Experienced Researchers in 2017.

Event Type:SWS Colloquium
Visibility:D1, D2, D3, INET, D4, D5, SWS, RG1, MMCI
We use this to send out email in the morning.
Level:AG Audience
Language:English
Date, Time and Location
Date:Thursday, 13 December 2018
Time:10:30
Duration:60 Minutes
Location:Kaiserslautern
Building:G26
Room:113
Abstract
In this talk I shall outline a summary of our five year long initiative studying the temporal dynamics of various human language-like entities over the social media. Some of the topics that I plan to cover are (a)  how opinion conflicts could be effectively used for incivility detection in Twitter [CSCW 2018], (b) how word borrowings can be automatically identified from social signals [EMNLP 2017] and (c)  how hashtags in Twitter form compounds like natural language words (e.g., #Wikipedia+#Blackout=#WikipediaBlackout) that become way more popular than the individual constituent hashtags [CSCW 2016, Honorable Mention].
Contact
Name(s):Susanne Girard
Video Broadcast
Video Broadcast:YesTo Location:Saarbrücken
To Building:E1 5To Room:105
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Created:Susanne Girard/MPI-SWS, 12/03/2018 10:14 AM Last modified:Uwe Brahm/MPII/DE, 12/05/2018 07:01 AM
  • Susanne Girard, 12/03/2018 10:26 AM
  • Susanne Girard, 12/03/2018 10:19 AM -- Created document.